Personalized Tumor Biomarkers

ABSTRACT

Clinical management of human cancer is dependent on the accurate monitoring of residual and recurrent tumors. We have developed a method, called personalized analysis of rearranged ends (PARE), which can identify translocations in solid tumors. Analysis of four colorectal and two breast cancers revealed an average of nine rearranged sequences (range 4 to 15) per tumor. Polymerase chain reaction with primers spanning the breakpoints were able to detect mutant DNA molecules present at levels lower than 0.001% and readily identified mutated circulating DNA in patient plasma samples. This approach provides an exquisitely sensitive and broadly applicable approach for the development of personalized biomarkers to enhance the clinical management of cancer patients.

This invention was made with government support under grants CA121113, CA057345, CA62924, and CA043460 awarded by the National Institutes of Health. The government has certain rights in the invention.

TECHNICAL FIELD OF THE INVENTION

This invention is related to the area of cancer detection and management. In particular, it relates to identification and use of somatic rearrangements as markers of a person's cancer.

BACKGROUND OF THE INVENTION

A nearly universal feature of human cancer is the widespread rearrangement of chromosomes as a result of chromosomal instability (1). Such structural alterations begin to occur at the earliest stages of tumorigenesis and persist throughout tumor development. The consequences of chromosomal instability can include copy number alterations (duplications, amplifications and deletions), inversions, insertions, and translocations (2). Historically, the ability to detect such alterations has been limited by the resolution of genetic analyses. However, a number of more recent approaches including high density oligonucleotide arrays and high throughput sequencing have allowed detection of changes at much higher resolution (3-15).

Tumor-specific (somatic) chromosomal rearrangements have the potential to serve as highly sensitive biomarkers for tumor detection. Such alterations are not present in normal cells and should be exquisitely specific. Rearrangement-associated biomarkers therefore offer a reliable measure that would be useful for monitoring tumor response to specific therapies, detecting residual disease after surgery, and for long-term clinical management. Recurrent somatic structural alterations, such as those involving the BCR-ABL oncogene (the target of the Philadelphia chromosome translocation), immunoglobulin (Ig) genes, T cell receptor (TCR) genes, and the retinoic acid receptor alpha (RARα) gene, have been shown to be useful as diagnostic markers in certain hematopoietic malignancies (16-20). However, recurrent structural alterations do not generally occur in most solid tumors. There is a continuing need in the art to develop tools for diagnosing and monitoring cancers.

SUMMARY OF THE INVENTION

According to one aspect of the invention a method is provided for identifying a personalized tumor marker for a cancer patient. A mate-paired library is made from tumor DNA of the patient. Mate pairs of the library comprise two genomic tags that are co-linear but not contiguous in a segment of the tumor DNA. Sequence of a plurality of mate pairs of the library is determined. Regions of copy number differences among regions in the tumor DNA of the patient are determined. Mate paired tags which map within a region of copy number difference or spanning a boundary of copy number difference are identified as potential markers of a tumor-specific DNA rearrangement in the cancer patient.

According to another aspect of the invention a method is provided for assessing or detecting tumor in a patient. A DNA fragment is amplified using a template from the patient's tissues or body fluids and primers that span a patient-specific, tumor-specific rearrangement breakpoint. The rearrangement breakpoint is between genes involved in rearrangements in <1% of tumors of patients with the same type of tumor. The amount or proportion of amplified DNA fragment in the patient's tissue or body fluid is determined.

Another aspect of the invention is another method of identifying a personalized tumor marker for a cancer patient. Sequence of two ends of each of a plurality of fragments of DNA from the cancer patient is determined. Regions of copy number differences among regions in the tumor DNA of the patient are determined. Fragments of the plurality of fragments which map within a region of copy number difference or spanning a boundary of copy number difference are identified as potential markers of a tumor-specific DNA rearrangement in the cancer patient.

A further aspect of the invention is another method of identifying a personalized tumor marker for a cancer patient. A plurality of mate paired tags of a library of mate paired tags is tested by comparing to non-tumor DNA or to sequence of non-tumor DNA. Each of the mate paired tags comprises two genomic tags that are co-linear but not contiguous in a segment of tumor DNA of the cancer patient. A tumor-specific DNA rearrangement is identified if the two genomic tags of a mate paired tag are at different locations or in a different orientation within a chromosome or on different chromosomes of non-tumor DNA compared to tumor DNA.

Yet another aspect of the invention is another method of identifying a personalized tumor marker for a cancer patient. Two ends of a plurality of fragments of tumor DNA of the cancer patient are tested by comparing to non-tumor DNA or to sequence of non-tumor DNA. A tumor-specific DNA rearrangement is identified if the ends of a fragment are at different locations or in a different orientation within a chromosome or on different chromosomes of non-tumor DNA compared to tumor DNA.

Still another aspect of the invention is a method of screening for a cancer in a human. A plurality of mate paired tags of a library of mate paired tags is tested by comparing to normal DNA or to sequence of normal DNA. Each of the mate paired tags comprises two genomic tags that are co-linear but not contiguous in a segment of DNA in the blood of the human. A DNA rearrangement is identified if the two genomic tags of a mate paired tag are at different locations or in a different orientation within a chromosome or on different chromosomes of normal DNA compared to blood DNA. The presence of a DNA rearrangement suggests the presence of a cancer in the human.

A further aspect of the invention is a method of screening for a cancer in a human. Two ends of a fragment of blood DNA of the human are tested by comparing to normal DNA or to sequence of normal DNA. A DNA rearrangement is identified if the ends are at different locations or in a different orientation within a chromosome or on different chromosomes of normal DNA compared to blood DNA. The presence of a DNA rearrangement suggests the presence of a cancer in the human.

An additional aspect of the invention is a kit for monitoring presence or amount of a breakpoint in a somatic DNA rearrangement in tumor DNA of a patient. The kit may comprise one or more pairs of amplification primers. Each pair is complementary to priming sites on opposite sides of a breakpoint. The priming sites are separated by less than 200 basepairs in the tumor DNA. The DNA rearrangement occurs in <1% of tumors of patients with the same type of tumor.

These and other embodiments which will be apparent to those of skill in the art upon reading the specification provide the art with methods for detecting and monitoring cancers in the body.

BRIEF DESCRIPTION OF THE DRAWINGS

FIG. 1. Schematic of “Personalized Analysis of Rearranged Ends (PARE)” approach. The method is based on next generation mate-paired analysis of, e.g., resected tumor DNA to identify individualized tumor-specific rearrangements. Such alterations are used to develop PCR based quantitative analyses for personalized tumor monitoring of plasma samples or other bodily fluids.

FIGS. 2A and 2B. Detection of tumor-specific rearrangements in breast and colorectal cancers. Two representative rearrangements are shown for each tumor sample. PCR amplification across breakpoint regions is indicated in (FIG. 2A) and the genomic coordinates for a representative mate-pair of each rearrangement are listed in (FIG. 2B).

FIG. 3. Detection of tumor specific rearrangements in mixtures of tumor and normal DNA. Decreasing amounts of tumor DNA were mixed with increasing amounts of normal tissue DNA (300 ng total) and were used as template molecules for PCR using chromosomes 4/8 translocation specific primers (top) or chromosome 3 control primers (see Example 1 for additional information).

FIG. 4A-4B. Detection of tumor-specific rearrangements in plasma of cancer patients. FIG. 4A. The identified chromosome 4/8 and 16 rearrangements were used to design PCR primers spanning breakpoints and used to amplify rearranged DNA from tumor tissue and plasma from patients Hx402 and Hx403, respectively. A plasma sample from an unrelated healthy individual was used a control for both rearrangements. FIG. 4B. Plasma samples from patient Hx402 were analyzed at different time points using digital PCR to determine the fraction of genomic equivalents of plasma DNA containing the chromosome 4/8 rearrangement. The fraction of rearranged DNA at day 137 was 0.3%, consistent with residual metastatic lesions present in the remaining lobe of the liver.

FIG. 5 (Figure S1.) Flow chart of approach used to identify rearranged sequences

FIG. 6 (Figure S2.) Comparison of Digital Karyotyping, Illumina SNP array, and SOLiD sequencing results on chromosome 8.

DETAILED DESCRIPTION OF THE INVENTION

We have found that any structural alteration identified in an individual's tumor can be used as a tumor marker, even if it is not found in tumors of the same type in other individuals and even if it is not a “driver”—causing a selective growth advantage—but merely a “passenger.” Moreover, such markers can be used to detect tumor and or quantify the tumor burden in an individual by assessment of blood.

Somatic rearrangements are a focus of the present invention. Such rearrangements are used as markers of a tumor. In particular, the boundaries of the rearrangments can be detected and used as a quantitative or qualitative indicator of the tumor. Because the boundaries are unique to the tumor DNA, they should be exquisitely specific markers of the tumor. Somatic rearrangements can be detected using any method known in the art. One particularly useful method is a technique called digital karyotyping. This technique identifies changes in copy number across regions or windows in the genome. Other methods may employ commercially available arrays to detect regions of copy number differences among regions of a genome. The copy number differences reflect a rearrangement, such as a deletion or amplification, and an amplification can further harbor other rearrangements within it. Once a somatic rearrangement is identified, one or more of its boundaries (also referred to as breakpoints) can be identified and that boundary can be a very specific marker for the tumor. Identifying a boundary can be accomplished by a number of techniques.

In one technique mate-paired genomic tags are tested to determine different copy numbers of one member of the pair compared to the other. A different copy number between two members suggests that the tags span a rearrangement breakpoint or boundary. The mate-pairs are typically derived from a single fragment that is processed to yield two smaller portions that can be more readily sequenced or analyzed. An intervening segment is typically removed, leaving the two smaller portions linked on a single molecule in the same orientation that they were found in the tumor genome.

A similar technique does not involve mate-pairs but involves sequencing and/or analyzing two different portions or ends of a single fragment of genomic DNA from a tumor. The two portions or ends may be separated by any distance, from immediately adjacent up to 1 kb, 1.5 kb, 2 kb, or 3 kb, for example. The ends may not be the literal ends of a fragment, but may be close to the ends or merely two non-overlapping portions. The sequence of the two ends may be determined separately, for example from either end, or the sequence can be determined in one direction and analyzed for separate, non-overlapping segments of differing copy numbers.

Amplification primers are known in the art and typically comprise between 15 and 50 nucleotides which are complementary to a template. A pair of primers is complementary to opposite strands of a template and can amplify a double stranded fragment that contains the two primer sequences in addition to sequences which are between them on the template. From 0 to 10, 20, 50, 100, 200, 500, 1000, 1500, or 2000 basepairs or nucleotides may lie between the two primer-complementary sequences on the template. According to the invention, each primer will hybridize to opposite sides of a rearrangement boundary. These primers are also referred to as spanning or flanking the breakpoint, because the amplicon that they generate will span and/or flank the breakpoint. Optionally, a primer may contain the boundary junction. Primers need not be 100% complementary to template, but may incorporate other bases or sequences of bases for other purposes, such as to facilitate purification or downstream processing.

Once tumor-specific breakpoints are ascertained for an individual patient, primers can be prepared and shipped elsewhere for use. For example pairs or panels of pairs of primers can be packaged in a single or divided container. The primers can be in any suitable condition, including in solution, dried, freeze dried, at room temperature, on wet ice, and on dry ice. Additional components may be included in the kits, for example other reagents for performing the monitoring or assessing with the primers. Additional components may include a polymerase for amplification, reagents for preparing template from cancer cells, normal cells, or body fluids, control primers, control templates, labeled or unlabelled deoxyribonucleotides.

In order to identify or confirm a rearrangement in tumor DNA, tumor sequences can be compared to a reference sequence, for example in a database, or to a sequence from normal DNA of the same or a related individual. Two mate-paired tags or two fragment ends that map to different locations on a chromosome or to different chromosomes or to differently oriented sequences on the same chromosome indicate a rearrangement. The comparison can be done in silico or in vitro.

Breakpoints in a rearrangement are places where two sequences are joined in a tumor DNA that are not joined in normal or reference DNA. Thus the breakpoint refers to an inferred break that occurred in order to join the sequences that are found in the tumor DNA. Breakpoints are also referred to as boundaries of a rearrangement. Normal DNA may be obtained from lymphocytes or a buccal swab, for example. In cases where the subject has a diagnosed tumor, normal DNA can be obtained from any non-tumor tissue, including a matched tissue from the same organ.

The breakpoints which are of interest in the present methods are those which are not known to be associated with or causative of leukemia, lymphoma, sarcoma, or prostate cancers. The breakpoints which are associated with or causative of those cancers typically occur in a high proportion of such tumors, often between the same or a limited number of genes or gene loci. The rearrangements used in the present methods are more idiosyncratic, occurring between the same genes or gene loci in less than 1%, less than 0.1%, or less than 0.01% of the patients with the same type of tumor.

Assays using tumor-specific primers can be used for a variety of purposes. For example, patients can be monitored over time to see if a tumor is in remission or is progressing. The assay can be used before, during, and/or after a therapy regimen. The assay can be used to assess surgical efficacy. Tumor margins can be assessed to guide the extent of surgical resection. The assay can be used to monitor for relapse or recurrence.

Using the tumor rearrangement-specific primers to conduct assays, one can obtain qualitative or quantitative results. The quantitative results can be absolute amounts or relative amounts, for example, compared to a non-rearranged sequence on the same or a different chromosome. Assays can be conducted using the rearrangement-specific primers and tissues or body fluids from a subject. Suitable body fluids include whole blood, serum, and plasma, which are collectively referred to as blood. Other body fluids which may be used are saliva, sputum, and stool, for example. One or more pairs of primers can be used to amplify and assay for one or more tumor-specific rearrangements in a single patient. Using a panel of rearrangements markers may mitigate against any possible loss of marker during tumor growth and progression.

The results shown below in the Examples demonstrate that massively parallel sequencing can be used to develop personalized biomarkers based on somatic rearrangements. We were able to identify tumor-specific markers in each of the six breast and colorectal cancer cases analyzed. Moreover, we demonstrated that the identified breakpoints can be used to detect tumor DNA in the presence of large quantities of normal DNA and in patient plasma. These results highlight the sensitivity and specificity of the approach and suggest broad clinical utility of the methods disclosed here, collectively referred to as PARE.

Virtually all tumors of clinical consequence are thought to have rearranged DNA sequences resulting from translocations and copy number alterations and these sequences are not present in normal human plasma or non-tumor tissues. A recent genome-wide analysis of 24 breast cancers showed that all analyzed samples contained at least one genomic rearrangement that could be detected by next generation sequencing (24). From a technical perspective, PARE-derived clinical assays should have no false positives: the PCR amplification of aberrant fusions of DNA sequences that are normally thousands of base pairs apart or on different chromosomes should not occur using non-tumor DNA as a template. In contrast, approaches that rely on monitoring of residual disease by analysis of somatic single base alterations in specific genes are limited by polymerase error rates at the bases of interest (25). The PCR process generates background single base mutations that are identical to bona fide mutations, but does not generate false-positive rearrangements with carefully chosen primers. Because of the higher signal-to-noise ratio thereby obtained, PARE theoretically permits more sensitive monitoring of tumor burden.

The PARE approach, however, is not without limitations. Although somatic alterations in oncogenes and tumor suppressor genes persist throughout the clonal evolution of a tumor, it is conceivable that some rearranged sequences could be lost during tumor progression. The identification of several PARE biomarkers, each specific for different chromosomal regions, would mitigate this concern, as it is unlikely that all such markers would be lost in any particular patient. Another limitation is the cost of identifying a patient-specific alteration. In this prototype study, we obtained an average of 194.7 million reads per patient, resulting in ˜200 tags in each 3 kb bin. The current cost for such an assay is ˜$5,000, which is expensive for general clinical use. This cost is a consequence of the high physical coverage and the inefficiencies associated with stringent mapping of 25 bp sequence data to the human genome. As read quality and length continue to improve, less stringent mapping criteria and lower physical coverage will permit analyses similar to those in this study but with substantially less sequencing effort. Moreover, the cost of massively parallel sequencing, which has decreased substantially over the last two years, continues to spiral downwards. Finally, there are clinical settings where the fraction of any DNA from tumors, including rearranged sequences, in the patient plasma is exceedingly small and undetectable. To be detectable by PARE, there must be at least one rearrangement template molecule in the plasma sample analyzed. When disease-burden is this light, PARE may yield false negative results. Larger studies will be needed to confirm particular clinical uses of PARE and its prognostic capabilities.

Despite these caveats, there are numerous potential applications of PARE. These include the more accurate identification of surgical margins free of tumor and the analysis of regional lymph nodes as well as the measurement of circulating tumor DNA following surgery, radiation, or chemotherapy. Short term monitoring of circulating tumor DNA may be particularly useful in the testing of new drugs, as it could provide an earlier indication of efficacy than possible through conventional diagnostic methods such as CT scanning Given current enthusiasm for the personalized management of cancer patients, PARE affords a timely method for uniquely sensitive and specific tumor monitoring.

The above disclosure generally describes the present invention. All references disclosed herein are expressly incorporated by reference. A more complete understanding can be obtained by reference to the following specific examples which are provided herein for purposes of illustration only, and are not intended to limit the scope of the invention.

Example 1 Materials and Methods Clinical Samples and Cell Lines

DNA samples were obtained from early passage xenografts and cell lines of breast and colorectal cancers as described (26). Normal DNA samples were obtained from matched normal tissue. Plasma samples were collected from colorectal cancer patients Hx402 and Hx403 and from an unrelated normal control. All samples were obtained in accordance with the Health Insurance Portability and Accountability Act (HIPAA).

Digital Karyotyping and Illumina BeadChip Arrays

A Digital Karyotyping library for colorectal cancer cell line Co84C was constructed as previously described (6). In summary, 17 bp genomic DNA tags were generated using the NlaIII and Sad restriction enzymes. The experimental tags obtained were concatenated, cloned and sequenced. Previously described software was used to extract the experimental tags from the sequencing data. The sequences of the experimental tags were compared to the predicted virtual tags extracted from the human genome reference sequence. Amplifications were identified using sliding windows of variable sizes and windows with tag density ratios ≧6 were considered to represent amplified regions.

The Illumina Infinium II Whole Genome Genotyping Assay employing the BeadChip platform was used to analyze the colorectal cancer cell line Co84C at 317 k SNP loci from the Human HapMap collection. This assay is a two step procedure; first the sample is hybridized to a 50 nucleotide oligo, then the SNP position is interrogated by a two-color fluorescent single base extension. Image files and data normalization were processed as previously described (10). Amplifications were defined as regions having at least one SNP with a Log R ratio ≧1.4, at least one in ten SNPs with a Log R ratio ≧1, and an average Log R ratio of the entire region of ≧0.9.

SOLiD Library Preparation and Sequencing

Mate-pair libraries were generated for the SOLiD platform as described (15). In brief, genomic DNA was sheared into ˜1.4 kb fragments and used as template in emulsion PCR. Fragments were coupled to beads via an adapter sequence and clonally amplified. A 3′ modification of the DNA fragments allowed for covalent attachment to a slide. Sequencing primers hybridized to the adapter sequence and four fluorescently labeled di-base probes were used in ligation-based sequencing. Each nucleotide is sequenced twice in two different ligation reactions, resulting in two base encoding which has been shown to reduce sequencing artifacts.

Sequence data was mapped to the human genome reference sequence (hg18) using the Corona SOLiD software pipeline. All 25 bp tags (for both individual tag and mate-paired tag analyses) were required to match the reference genome uniquely and without mismatches.

Analysis of Single Tags for Copy Number Alterations

The SOLiD tags were filtered and the remaining tags were grouped by genomic position in non-overlapping 3 kb bins. A tag density ratio was calculated for each bin by dividing the number of tags observed in the bin by the average number of tags expected to be in each bin (based on the total number of tags obtained for chromosomes 1-22 for each library divided by 849,434 total bins). The tag density ratio thereby allowed a normalized comparison between libraries containing different numbers of total tags. A control group of SOLiD libraries made from the four matched normal samples from Table 1 and two itional normal samples (CEPH sample NA07357 and NA18507 used to define areas of germline copy number variation or which contained a large fraction of repeated or low complexity sequences. Any bin where at least 2 of the normal libraries had a tag density ratio of <0.25 or >1.75 was removed from further analysis.

Homozygous deletions were identified as three or more consecutive bins with tag ratios <0.25 and at least one bin with a tag ratio <0.005. Amplifications were identified as three or more consecutive bins with tag ratios >2.5 and at least one bin with a tag ratio >6. Single copy gains and losses were identified through visual inspection of tag density data for each sample.

Analysis of Mate-Paired Tags

Mate-paired tags mapping the reference genome uniquely and without mismatches were analyzed for aberrant mate-pair spacing, orientation and ordering and categorized in 13 three letter data formats (27). Mate pairs from the same chromosome that map at appropriate distances (˜1.4 kb) and in the appropriate orientation and ordering are categorized as AAA. Mate pairs mapping to different chromosomes are categorized as C**. For the analysis of translocations of the PARE approach, we focused on C** mate pairs, while for analysis of rearrangements adjacent to copy number alterations, we chose all non-AAA (including C**) mate pairs for further analysis.

PARE Identification and Confirmation of Candidate Rearrangements

To identify candidate translocations, we grouped C** mate pair tags in 1 kb bins and looked for bin-pairs which were observed ≧5 times in the tumor sample but which were not observed in matched normal sample. For identification of candidate rearrangements associated with copy number alterations, we analyzed the 10 kb boundary regions of amplifications, homozygous deletions, or lower copy gains and losses for neighboring non-AAA tags observed >2 times in the tumor but not matched normal sample. In the case of Hx402 and Hx403 the analysis of rearrangements adjacent to copy number alterations was performed in the absence of SOLiD libraries from normal tissue.

Mate pair tag sequences associated with a candidate rearrangement were used as target sequences for primer design using with Primer3 (28). When primers could not be designed from tag sequences alone, adjacent genomic sequence up to 100 bp was used for primer design. Importantly, the observed rearranged tag ordering and orientation was used for Primer3 queries. Primers were used for PCR on tumor and matched normal samples as previously described (26). The candidate rearrangement was confirmed if a PCR product of the expected size was seen in the tumor, but not the matched normal sample. Sanger sequencing of PCR products was used to identify sequence breakpoint in a subset of cases.

Detection of PARE Biomarker in human plasma

To determine the sensitivity of rearranged biomarkers in the presence of normal DNA, serial dilutions of tumor:normal DNA mixtures were used as templates for PCR using primers for the chromosome 4/8 translocation in Hx402. The tumor DNA dilution began at 1:125 tumor:normal and continued as a one-in-five serial dilution until reaching 1:390,625 tumor:normal mixture. PCR was performed for each of the six tumor:normal DNA mixtures and for the normal DNA control, using translocation specific primers as well as control primers from chromosome 3.

One ml of human plasma samples were obtained from patients Hx402 and Hx403 and from a control individual and DNA was purified as described (29). Whole genome amplification of plasma DNA was performed by ligation of adaptor sequences and PCR amplification with universal primers from the Illumina Genomic DNA Sample Prep Kit.

Primers designed to amplify <200 bp fragments spanning each PARE rearrangement were used in PCR from total plasma DNA using patient or control samples. Digital PCR of plasma DNA dilutions from patient Hx402 using rearrangement specific and control primers were used to quantitate the fraction mutated DNA molecules.

Example 2 Description of the Approach

The PARE approach, shown schematically in FIG. 1, in one embodiment employs the identification of patient-specific rearrangements in tumor samples. To determine the feasibility of identifying such alterations using next generation sequencing approaches, we initially analyzed four tumor samples (two colon and two breast tumors) and their matched normal tissue samples using the Applied Biosystems SOLiD System (Table 1). Genomic DNA from each sample was purified, sheared and used to generate libraries with mate-paired tags ˜1.4 kb apart. Libraries were digitally amplified by emulsion polymerase chain reaction (PCR) on magnetic beads (21) and 25 bp mate-paired tags were sequenced using the sequencing-by-ligation approach (15, 22). An average of 198.1 million 25 bp reads were obtained for each sample where each read aligned perfectly and was uniquely localized in the reference human genome (hg18), resulting in 4.95 Gb mappable sequence per sample. An average of 40 million mate-paired reads where both tags were perfectly mapped to the reference human genome were obtained for each sample. The total amount of genome base-pairs covered by the mate-paired analysis (i.e. distance between mate-paired tags×number of mate-paired tags) was 53.6 Gb per sample, or a 18-fold physical coverage of the human genome.

TABLE 1 Summary of mate-paired tag libraries Single tag analyses Mate-paired tag analyses Number of tags Expected Number of mate- Distance Total physical Expected Number of matching Total bases coverage paired tags matching between mate- coverage by mate- genome Samples beads* human genome sequenced (bp) per 3 kb bin human genome paired tags (bp) paired tags (bp) coverage Colon Cancer Co108 tumor 526,209,780 121,527,707 3,038,192,675 122 21,899,809 1,371 30,024,693,714 10.0 Co108 normal 328,599,033  86,032,253 2,150,806,325  86 11,694,361 1,254 14,665,530,804  4.9 Co84 tumor 677,137,128 256,065,437 6,401,635,925 256 58,678,410 1,488 87,292,060,006 29.1 Co84 normal 486,663,520 218,280,146 5,457,003,650 218 59,019,031 1,384 81,690,396,379 27.2 Hx402 tumor 523,745,015 198,342,749 4,958,568,725 198 43,457,431 1,629 70,789,547,653 23.6 Hx403 tumor 475,658,760 164,061,938 4,101,548,450 164 37,123,395 1,705 63,295,388,475 21.1 Breast cancer B7 tumor 840,979,999 281,027,274 7,025,681,850 281 27,548,989 1,220 33,604,662,404 11.2 B7 normal 705,704,265 253,482,262 6,337,056,550 253 57,878,644 1,404 81,271,654,770 27.1 B5 tumor 444,249,217 147,612,941 3,690,323,525 148 29,961,045 1,193 35,730,144,651 11.9 B5 normal 549,237,156 220,669,795 5,516,744,875 221 53,611,974 1,205 64,591,276,025 21.5 *Number of beads corresponds to the number of magnetic beads containing clonally amplified DNA fragments and represents the maximal number of raw sequnece reads for each run.

Example 3 Identification of Somatic Rearrangements

Two methods were used to identify somatic rearrangements from these data (FIG. 5). The first approach involved searching for tags whose mate-pairs were derived from different chromosomes (interchromosomal rearrangements). The high physical coverage of breakpoints provided by the ˜40 million mate-paired sequences per sample (Table 1) suggested that a large fraction of such translocations could be identified. End sequences from such mate-paired tags were grouped into 1 kb bins and those bin pairs that were observed at least 5 times were analyzed further. The requirement for ≦5 occurrences minimized the chance that the presumptive fusion sequences represent incorrect mapping to the reference genome or artifacts of library construction. Comparison with SOLiD libraries made from the matched normal samples reduced the possibility that the fusion sequences represented rare germline variants rather than somatic events.

The second approach combined mate-paired tag data with copy number alterations identified by analyses of individual 25 bp tags. Tumor-specific copy number alterations are often associated with de novo rearrangements (23) and the boundaries of such alterations would be expected to contain novel junctions not present in the human genome. To identify somatic copy number gains, losses, high-amplitude amplifications and homozygous deletions, tags were grouped into non-overlapping 3 kb bins. Normalized tag densities, defined as the number of tags per bin divided by average number of tags per bin, were determined for all 3 kb bins in each sample. Bins that displayed tag density ratios >1.75 or <0.25 in two or more normal tissue samples (corresponding to <6% of all bins) were discarded from the analysis. This eliminated confounding regions of common germline copy number variation and resulted in 892,567 bins that were analyzed in each tumor sample. Comparison of 256 million reads from colorectal tumor sample Co84 with Illumina arrays containing ˜1 million SNP probes and with a ˜1 million Digital Karyotyping (DK) tag library obtained with Sanger sequencing showed high concordance for copy number alterations among the three platforms (FIG. 6 and Table S1). With the higher resolution afforded by the SOLiD data, we were able to identify additional copy number changes not detected with the other methods (Table S2). Boundary regions of copy number alteration were analyzed to identify mate-paired tags corresponding to rearranged DNA sequences. These included fusion of DNA sequences that have inappropriate spacing, order or orientation on the same chromosome (intrachromosomal rearrangements) or inappropriate joining of sequences from different chromosomes (interchromosomal rearrangements).

TABLE S1 Comparison of SOLiD sequencing, Illumina SNP arrays, and Digital Karyotyping for analysis of copy number alterations Digital Karyotyping Illumina SNP Arrays Tumor Left Right Tag Density Left Right Sample Chr Boundary Boundary Size (bp) Ratio* Boundary Boundary Amplification Co84C 6 41,273,307 43,008,812 1,735,506  9.1 41,419,345 42,485,546 Amplification Co84C 8 127,618,526 128,009,287 390,762 19.2 127,621,008 127,995,012 Amplification Co84C 8 128,750,189 128,857,861 107,673 8.3 128,750,181 128,848,183 Amplification Co84C 8 129,473,672 129,667,129 193,458 13.8 129,472,209 129,677,099 Amplification Co84C 11 34,337,207 35,266,401 929,195 33.0 34,359,268 35,265,359 Amplification Co84C 13 109,096,557 109,553,930 457,374 9.2 109,108,212 109,557,712 Amplification Co84C 15 88,545,070 89,258,106 713,037 26.2 88,561,995 89,253,599 Amplification Co84C 19 34,570,450 34,641,949  71,500 7.9 34,561,976 34,641,548 Amplification Co84C 19 34,956,853 35,344,522 387,670 14.3 34,966,463 35,321,409 Amplification Co84C 19 36,274,262 36,388,331 114,070 6.2 36,281,540 36,385,232 Amplification Co84C 19 54,500,237 54,643,655 143,419 8.4 54,520,709 54,622,533 Illumina SNP Arrays SOLiD sequencing Log R Left Right Tag Density Size (bp) Ratio* Boundary Boundary Size (bp) Ratio* Amplification 1,066,202 1.9 41,418,000 42,537,000 1,119,001 16.4 Amplification 374,005 2.7 127,617,000 128,010,000 393,001 150.0  Amplification 98,003 2.0 128,748,000 128,859,000 111,001 43.1 Amplification 204,891 3.4 129,471,000 129,678,000 207,001 116.6  Amplification 906,092 3.0 34,338,000 35,268,000 930,001 91.2 Amplification 449,501 2.3 109,107,000 109,557,000 450,001 33.6 Amplification 691,605 3.6 88,542,000 88,953,000 411,001 93.2 88,983,000 89,118,000 135,001 32.8 89,133,000 89,166,000 33,001 84.8 89,208,000 89,256,000 48,001 50.3 Amplification 79,573 2.2 34,548,000 34,641,000 93,001 33.9 Amplification 354,947 2.6 34,956,000 35,346,000 390,001 36.8 Amplification 103,693 2.5 36,273,000 36,396,000 123,001 21.2 Amplification 101,825 2.1 54,498,000 54,636,000 138,001 41.8 *Values for Tag Density Ratios and Log R Ratios represent observed maximum values for amplifications.

TABLE S2 Putative copy number alterations identified by SOLiD sequencing in Co84 that were not identified by Illumina SNP arrays or Digital Karyotyping Left Right Tag Density Alteration Type Chromosome Boundary Boundary Size (bp) Ratio* Homozygous deletion 1 83,388,000 83,532,000 144,001 0.0 Amplification 1 151,188,000 151,194,000 6,001 11.2 Amplification 1 159,393,000 159,414,000 21,001 9.7 Amplification 1 172,101,000 172,107,000 6,001 18.1 Amplification 1 179,910,000 179,916,000 6,001 17.4 Amplification 1 200,238,000 200,256,000 18,001 9.6 Amplification 1 204,168,000 204,186,000 18,001 13.2 Homozygous deletion 4 9,804,000 9,813,000 9,001 0.0 Homozygous deletion 4 69,066,000 69,171,000 105,001 0.0 Homozygous deletion 4 147,138,000 147,147,000 9,001 0.0 Amplification 5 31,749,000 31,755,000 6,001 12.3 Homozygous deletion 5 114,279,000 114,288,000 9,001 0.0 Homozygous deletion 7 38,358,000 38,364,000 6,001 0.0 Amplification 8 145,698,000 145,725,000 27,001 11.5 Homozygous deletion 10 66,978,000 66,984,000 6,001 0.0 Homozygous deletion 13 108,681,000 108,687,000 6,001 0.0 Amplification 13 110,139,000 110,157,000 18,001 22.5 Homozygous deletion 16 54,357,000 54,378,000 21,001 0.0 Homozygous deletion 16 59,112,000 59,130,000 18,001 0.0 Amplification 17 76,467,000 76,482,000 15,001 17.8 Homozygous deletion 18 14,268,000 14,289,000 21,001 0.0 Amplification 19 50,271,000 50,277,000 6,001 9.3 Amplification 20 25,404,000 25,428,000 24,001 13.1 Homozygous deletion X 49,050,000 49,059,000 9,001 0.0 Homozygous deletion X 121,650,000 121,734,000 84,001 0.0 *Values for Tag Density Ratios represent observed maximum values for amplifications.

Through these two approaches, we identified 57 regions containing putative somatic rearrangements, with an average of 14 rearrangements per sample (Table 2). Of these, an average of seven represented interchromosomal rearrangements and seven represented intrachromosomal rearrangements. For confirmation, we designed primers to 42 of the paired-end regions and used them for PCR spanning the putative breakpoints. Thirty-five of these (83%) yielded PCR products of the expected size in the tumor samples but not in the normal samples (FIG. 2A-2B, Table S3). Sanger sequencing of seven PCR products confirmed the rearrangements in all cases tested. Though there was variation in the number of detected alterations per sample (range 7 to 21), all four tumor samples were found to have at least 4 bona fide somatic rearrangements through this approach.

TABLE 2 Summary of rearrangements idenitified in tumor samples Rearrangement type Intrachrom- Interchrom- Total Tested Confirmed somatic Sample osomal osomal rearrangements rearrangements rearrangements Tumor and normal libraries B5 7 4 11 7 5 (71%) B7 17 4 21 16 15 (94%)  Co84 0 7 7 6 4 (67%) Co108 6 12 18 13 11 (85%)  Tumor libraries Hx402 7 2 9 9 4 (44%) Hx403 17 0 17 12 7 (58%)

TABLE S3 Confirmed somatic rearrangements in breast and colorectal cancer samples* Forward tag Reverse tag Chro- Chro- mo- mo- Sample some Position some Position Type Primer 1 Primer 2 B5C 3 52,638,626 3 52,573,088 AAC AAGTTTTTCAAGCTTTACCTGAAGT TATATTGGAAGAATAGAAATGAATGG B5C 4 93,109,700 4 −93,105,085 BAC AGCCAAGTGCAATTCTCCAG GCACACTGTTTGCAGGAATG B5C 11 57,713,780 8 −48,889,516 C** GCCACCTTTCTTTCTTTCTGA AAGCTTTGTTTGGTTGTTCTCA B5C 18 19,141,985 20 −29,591,944 C** TGGCTTTCAAAACCCACTG TCCTTTCTGCCCATTAGGG B5C 22 48,743,603 2 −104,047,142 C** TCATGGTTTATCCACGGTGT CACACCGCATTCACACAAAC B7C 1 −96,237,189 7 65,542,257 C** TCAAAACAGAAAGCATTAGGC CGCATCCAAAGTATTAATAGCAA B7C 2 197,428,606 2 113,761,988 AAC AACTCCTCCCACCTCAAAATC CCAAATTGCCTGCTTAAGAGAT B7C 2 −32,084,286 3 185,241,029 C** TGCTACCAATACTTCCCACTTG TACCGTCCTCCAGGCATGT B7C 2 114,604,628 18 53,562,784 C** GGAGAAAACCCTGGTTATTTTTA TCCCTCATCAGAGCAAATCA B7C 3 −115,579,348 3 −115,651,310 AAC AAATTGGGAAGGATCATACTGAC TCTGAACATGCCTGATCTCATC B7C 4 785,983 4 733,804 AAC CTGAACTCCTGGGCTGAA TTGCTAAGTGATGCTACCTGTG B7C 5 107,405,959 5 107,231,803 AAC CCTGGCCCCTTAGGTAAGAT TGAAGAATCCTTCTAGTGATGGAA B7C 5 38,284,430 10 −44,715,202 C** TGCAGCTTTTCTCTGTCTTCA CTGCCAGTCCAAACTGGTG B7C 6 106,401,376 6 90,853,847 AAC TGCTGTTTCAAATTCCTACAGTC TGAAATTAGGACCTGGAGCAC B7C 6 101,933,981 6 102,444,426 ABC GCCAGGTAACATGCTCACTTT GATGCAGGAAGTTGACAGCA B7C 9 22,003,033 9 21,761,298 AAC GGGCTAAGCTTAAGAGTCTGG GCCATGTGCAAGTCAAGAAG B7C 11 −6,436,033 11 −6,519,897 AAC TCTGCCGGCATACTGGAC TAAGGGCGATGTGAACAAGG B7C 12 65,950,588 12 65,923,399 AAC GCCCTATTTTCAGAGAAAGTGGTA AACATCTCTTCCTTTTGAAGATCC B7C 13 60,438,525 13 52,159,979 AAC AATTTGCTCTCATCGTATTGTGT AGCTGAATCAAAATTTCCAATG B7C X 31,583,118 X 31,179,704 AAC CTGAATCTCTTTCCAGCAAAAT AATGGGTTAAGCAGTTTAGGG Co108C 2 191,184,628 5 −104,930,827 C** TAGCATGCACCACTTTAGGC AAAGGTTAAAGGACTGTTTTAAGTTG Co108C 2 78,849,963 6 −13,299,323 C** GGTTCTGGAGGGTTGGAGA GTTAAGATCAACATTTTTGTTTCAAG Co108C 2 −7,268,710 6 13,299,385 C** TATGCCACCATCGCTTAGGT TCCCAGTGCAATAAAACCAA Co108C 2 −141,266,018 13 96,916,170 C** GGTGTTCTCTCTCCCATACCA CGATCTATACACCACCCCACA Co108C 3 −60,400,269 3 −60,437,489 AAC TGCTTTTAGTTTTGGGTACGG GCTGATTTGTTTATACCCAGTGC Co108C 3 −60,365,933 3 −60,498,861 AAC ATCCTCGGACTGGACTGAGA AACCCCATCCTGAAGCTACC Co108C 3 60,573,034 3 60,472,593 AAC GGGTTATCTCAAAAGGGCAGA GCTCTCAATTTGTGTGATTTGG Co108C 4 81,934,151 15 54,039,041 C** TGTGTTCCTCTCCTCTTAAGCAT GACTACAAATGGCCCAGACTC Co108C 6 −13,299,291 5 157,523,537 C** ATCCCCACATTCCCAACC CCCAGCCATATGTTGGTTTA Co108C 6 13,299,271 2 −20,956,947 C** GTATTTGTTCATGTTTGTTAGGTGTT TCAATGGGGGAGAGAGAGC Co108C 13 34,581,537 10 67,756,452 C** ACGTGTGTATTGGGGGTAGC CCAGATGGCTGGGTTAAATAAA Co84C 8 128,442,121 19 49,144,200 C** AGCTAGGTGGAGAATTTGTCG GGCTTCTGTAGAGTGCACATGA Co84C 11 34,790,251 13 109,267,462 C** AAGGAGATTGGTTATTGTGGAAA CTGCAGGAACTGTCTCATTCTT Co84C 11 −34,405,644 15 88,736,701 C** TGCTGAATCATTCTCCCAACT TGGTGATTCCACTGAGGTGA Co84C 15 −89,096,347 8 127,747,412 C** GCATTCTAAAGATGAAGTCCCATT GGAAACCGTTAGTGGAAAAGTC Hx402x 8 96,971,644 4 156,043,548 C** CAGGTGATATACCAAAGAAAATTAGG TTTGGGTTCAGTTCTATTTGAAGA Hx402x 5 −100,413,406 5 −137,521,052 AAC AGTCAACGCCCTAGCATGG TGGGCATGAGCAAGATATTC Hx402x 8 −144,771,376 8 −144,787,051 AAC AATCACGTTGGGTGACTGTG GTGACAGGCTGGGTGTCC Hx402x 14 −85,526,541 14 −85,560,400 AAC TGAAGGTTGAGTTGCCAGTG TGTATGAAACATTGTAGAGGCTGT Hx403x 1 119,547,240 1 −119,550,445 BBC AGGAGGAAAGCAACACATAGAG GGTGATTTTCAATGCATATTTCA Hx403x 5 −27,160,637 5 27,150,736 BBC AATTACCACAACTCCCAGCAG CAAAAGATTTCCAAATGCAGGT Hx403x 11 66,674,459 11 66,662,814 AAC TGAATCAGAAAGTCTGGCAGT CACTTGAGAATCAATGATATGCAG Hx403x 16 6,343,641 16 6,727,736 AAC CCTAGCCCTTTGTTCCCTGT TTTGTGTACCTAGACATTCATCCAA Hx403x 16 6,574,321 16 6,759,729 AAC GCAGAGAACAGCAGAAAAGTTG AGCCAAGATCAAGCCACAGA Hx403x 16 26,579,136 16 −26,582,595 BBC TTCTCTTTCTCTGCCTTCAGTG TTGATGATTTAGAAACTCTAGCCTGT Hx403x 17 34,622,352 17 −34,624,284 BBA GGCTCCCCTCTCCATTCC CTGCTGACGTGCTGGTCTT * A single representative mate pair is shown for each rearrangement. Forward and reverse tags and their genomic coordinates correspond to F3 and R3 SOLiD mate pair tags. The type of rearrangement corresponds to the categories described in http://www3.appliedbiosystems.com/cms/groups/mcb_marketing/documents/generaldocuments/cms_058717.pdf. AAC corresponds to mate pairs spanning deletions; codes starting with B denote incorrect strand orientation; codes containing a B at the middle position denote incorrect ordering; and C** corresponds to interchromosomal translocations. Primers 1 and 2 correspond to primers used for confirming tumor-specific rearranged sequences.

Further examination revealed that rearrangements could be readily identified with high confidence even in the absence of data from matched normal DNA by using the copy number and mate-pair coupled approach. Elimination of analysis of the matched normal would reduce the cost and simplify the identification of rearrangements. To test this strategy, two additional tumor samples (Hx402 and Hx403) were then analyzed through the SOLiD approach, but without generation of matching normal DNA libraries. We found that it was possible to identify putative rearrangements resulting in inter- and intra-chromosomal rearrangements at the border of copy number variations with high specificity even in the absence of a matched normal library. We were able to identify 11 confirmed somatic alterations (4 and 7 in Hx402 and Hx403, respectively) out of 21 candidate changes tested (Table S3).

Example 4 Development of PARE Biomarkers from Rearranged Sequences

Each of the rearranged sequences identified through PARE was unique, as no identical rearrangement was found in any of the other five tumor samples. To determine the utility of these rearranged sequences to serve as potential biomarkers, we designed PCR assays to detect them in the presence of increasing amounts of normal DNA. These conditions simulate detection of tumor DNA from patient blood or other bodily fluids where tumor DNA comprises a minority of total DNA. PCR products representing a rearranged region from each of the six dilutions of tumor DNA could be identified, even in mixtures of DNA containing 1 cancer genome equivalent among ˜390,000 normal genome equivalents (FIG. 3). Furthermore, no background PCR products were discernable when DNA from normal tissues was used as control.

To determine whether the rearranged sequences could actually be detected in clinical samples, we evaluated circulating DNA from plasma samples of patients Hx402 and Hx403. The sample from patient Hx403 was obtained prior to surgery while the samples from patient Hx402 were obtained prior to and after surgery. A chromosome 4:8 translocation associated with an amplification was used in tumor Hx402 and an intra-chromosomal rearrangement associated with a homozygous deletion of chromosome 16 was used in tumor Hx403. PCR amplification of plasma DNA using primers spanning the breakpoints produced products of the expected sizes only in the plasma samples from patients with disease and not in plasma from healthy controls (FIG. 4A). Sequencing of the PCR products from plasma DNA identified the identical breakpoints observed in the tumor DNA samples.

Example 5 Detection of PARE Biomarker in Human Plasma

To determine the sensitivity of rearranged biomarkers in the presence of normal DNA, serial dilutions of tumor:normal DNA mixtures were used as templates for PCR using primers for the chromosome 4/8 translocation in Hx402. The tumor DNA dilution began at 1:125 tumor:normal and continued as a one-in-five serial dilution until reaching 1:390,625 tumor:normal mixture. PCR was performed for each of the six tumor:normal DNA mixtures and for the normal DNA control, using translocation specific primers as well as control primers from chromosome 3.

One ml of human plasma samples were obtained from patients Hx402 and Hx403 and from a control individual and DNA was purified as described (29). Whole genome amplification of plasma DNA was performed by ligation of adaptor sequences and PCR amplification with universal primers from the Illumina Genomic DNA Sample Prep Kit.

Primers designed to amplify <200 bp fragments spanning each PARE rearrangement were used in PCR from total plasma DNA using patient or control samples. Digital PCR of plasma DNA dilutions from patient Hx402 using rearrangement specific and control primers were used to quantitate the fraction mutated DNA molecules.

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The disclosure of each reference cited is expressly incorporated herein.

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What is claimed is:
 1. A method of identifying a tumor biomarker that is specific to a patient, the method comprising assaying to determine sequences for two or more co-linear, non-contiguous portions of a nucleic acid fragment from a tumor sample of a patient; mapping the sequences to a reference to determine a rearrangement in the tumor sample relative to the reference; and identifying the rearrangement as a tumor biomarker specific to the patient.
 2. The method of claim 1, further comprising: identifying a breakpoint associated with the DNA rearrangement; designing amplification primers that hybridize to priming sites on opposite sides of the breakpoint; amplifying a DNA fragment from tissue or body fluid of the patient using the amplification primers; and determining an amount or proportion of tumor DNA in the tissue or body fluid from the amount or proportion of the amplified DNA fragment.
 3. The method of claim 2 wherein the DNA fragment is amplified from circulating DNA obtained from the patient's blood.
 4. The method of claim 2 further comprising: determining the amount or proportion of tumor DNA in the tissue or body fluid before and after a therapy regimen, wherein a change in the amount or proportion is indicative of the efficacy of the treatment regimen.
 5. The method of claim 2 further comprising: monitoring, when the patient is in remission, the amount or proportion of tumor DNA in the tissue or body fluid in order to assess recurrence of the tumor.
 6. The method of claim 2, further comprising the step of: monitoring the amount or proportion of tumor DNA in the tissue or body fluid over a course of time in order to assess progression of the tumor.
 7. The method of claim 1 wherein the reference is a DNA sequence from a non-tumor tissue of the patient.
 8. The method of claim 1 wherein the reference is a DNA sequence from a non-tumor tissue of a relative of the patient.
 9. The method of claim 1 wherein the reference is selected from a database of normal sequences.
 10. The method of claim 7 wherein the non-tumor tissue sample is obtained from lymphocytes or a buccal swab.
 11. The method of claim 1 wherein identifying the rearrangement further comprises identifying whether the two or more non-contiguous portions of the nucleic acid fragment are at different locations or in a different orientation within a chromosome or on different chromosomes in the nucleic acid fragment than in the reference.
 12. The method of claim 2 wherein the breakpoint is a position where two sequences are joined in the tumor sample that are not joined in a reference sequence.
 13. The method of claim 2 wherein the breakpoint is a boundary of the rearrangement.
 14. The method of claim 1 wherein the rearrangement is not known to be associated with or causative of one or more diseases selected from the group consisting of: leukemia, lymphoma, sarcoma, and prostate cancer.
 15. A method of assessing a disease in a patient, the method comprising assaying to determine sequences for two or more co-linear, non-contiguous portions of a nucleic acid fragment from a first sample of the patient at a first time point; mapping the sequences to a reference to identify a breakpoint associated with a rearrangement, wherein the breakpoint is a biomarker specific to the patient; obtaining a second sample from the patient at a second time point; assaying the second sample to determine presence of the breakpoint, wherein the presence of the breakpoint is indicative of disease burden.
 16. The method of claim 15 wherein the breakpoint is not known to be associated with or causative of one or more diseases selected from the group consisting of: leukemia, lymphoma, sarcoma, and prostate cancer.
 17. The method of claim 15 wherein the second time point is after a course of treatment.
 18. The method of claim 15 wherein the second time point is when the disease is in remission.
 19. The method of claim 15 wherein the assay comprises the steps of: amplifying nucleic acid from the second sample using primers designed to amplify the breakpoint; and quantifying the amplified nucleic acid, wherein the quantified nucleic acid is indicative of disease burden.
 20. The method of claim 19 wherein the reference is obtained from a normal sample of the patient, a database of known normal sequences, or a combination thereof. 